Data di Pubblicazione:
2016
Abstract:
The increasing trend in the recent literature on
coarse grained (CG) models testifies their impact in the study
of complex systems. However, the CG model landscape is
variegated: even considering a given resolution level, the force
fields are very heterogeneous and optimized with very different
parametrization procedures. Along the road for standardization
of CG models for biopolymers, here we describe a strategy to
aid building and optimization of statistics based analytical force
fields and its implementation in the software package AsParaGS
(Assisted Parameterization platform for coarse Grained modelS).
Our method is based on the use and optimization of analytical
potentials, optimized by targeting internal variables statistical
distributions by means of the combination of different algorithms
(i.e., relative entropy driven stochastic exploration of the parameter space and iterative Boltzmann inversion). This allows
designing a custom model that endows the force field terms with a physically sound meaning. Furthermore, the level of
transferability and accuracy can be tuned through the choice of statistical data set composition. The method?illustrated by means
of applications to helical polypeptides?also involves the analysis of two and three variable distributions, and allows handling
issues related to the FF term correlations. AsParaGS is interfaced with general-purpose molecular dynamics codes and currently
implements the "minimalist" subclass of CG models (i.e., one bead per amino acid, C? based). Extensions to nucleic acids and
different levels of coarse graining are in the course.
Tipologia CRIS:
01.01 Articolo in rivista
Keywords:
statistical biophysics; coarse grained models of biomolecules
Elenco autori:
Spampinato, GIULIA LIA BEATRICE; Tozzini, Valentina
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